Visual estimation of coronary obstruction severity from angiograms suffers from poor inter- and intraobserver reproducibility and is often inaccurate, In spite of the widely recognized limitations of visual analysis, automated methods have not found widespread clinical use, in part because they too frequently fail to accurately identify vessel borders, We have developed a robust method for simultaneous detection of left and right coronary borders that is suitable for analysis of complex images with poor contrast, nearby or overlapping structures, or branching vessels, The reliability of the simultaneous border detection method and that of our previously reported conventional border detection method were tested in 130 complex images, selected because conventional automated border detection might be expected to fail, Conventional analysis failed to yield acceptable borders in 65/130 or 50% of images, Simultaneous border detection was much more robust (p < .001) and failed in only 15/130 or 12% of complex images, Simultaneous border detection identified stenosis diameters that correlated significantly better with observer-derived stenosis diameters than did diameters obtained with conventional border detection (p < 0.001), Simultaneous detection of left and right coronary borders is highly robust and has substantial promise for enhancing the utility of quantitative coronary angiography in the clinical setting,